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Merge pull request #1391 from explosion/feature/multilabel-textcat
💫 Fix multi-label support for text classification
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commit
e79fc41ff8
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@ -21,7 +21,6 @@ import thinc.neural._classes.layernorm
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thinc.neural._classes.layernorm.set_compat_six_eight(False)
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thinc.neural._classes.layernorm.set_compat_six_eight(False)
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def train_textcat(tokenizer, textcat,
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def train_textcat(tokenizer, textcat,
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train_texts, train_cats, dev_texts, dev_cats,
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train_texts, train_cats, dev_texts, dev_cats,
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n_iter=20):
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n_iter=20):
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@ -57,13 +56,15 @@ def evaluate(tokenizer, textcat, texts, cats):
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for i, doc in enumerate(textcat.pipe(docs)):
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for i, doc in enumerate(textcat.pipe(docs)):
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gold = cats[i]
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gold = cats[i]
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for label, score in doc.cats.items():
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for label, score in doc.cats.items():
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if score >= 0.5 and label in gold:
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if label not in gold:
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continue
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if score >= 0.5 and gold[label] >= 0.5:
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tp += 1.
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tp += 1.
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elif score >= 0.5 and label not in gold:
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elif score >= 0.5 and gold[label] < 0.5:
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fp += 1.
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fp += 1.
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elif score < 0.5 and label not in gold:
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elif score < 0.5 and gold[label] < 0.5:
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tn += 1
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tn += 1
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if score < 0.5 and label in gold:
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elif score < 0.5 and gold[label] >= 0.5:
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fn += 1
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fn += 1
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precis = tp / (tp + fp)
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precis = tp / (tp + fp)
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recall = tp / (tp + fn)
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recall = tp / (tp + fn)
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@ -80,7 +81,7 @@ def load_data(limit=0):
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train_data = train_data[-limit:]
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train_data = train_data[-limit:]
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texts, labels = zip(*train_data)
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texts, labels = zip(*train_data)
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cats = [(['POSITIVE'] if y else []) for y in labels]
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cats = [{'POSITIVE': bool(y)} for y in labels]
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split = int(len(train_data) * 0.8)
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split = int(len(train_data) * 0.8)
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@ -97,7 +98,7 @@ def main(model_loc=None):
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textcat = TextCategorizer(tokenizer.vocab, labels=['POSITIVE'])
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textcat = TextCategorizer(tokenizer.vocab, labels=['POSITIVE'])
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print("Load IMDB data")
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print("Load IMDB data")
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(train_texts, train_cats), (dev_texts, dev_cats) = load_data(limit=1000)
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(train_texts, train_cats), (dev_texts, dev_cats) = load_data(limit=2000)
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print("Itn.\tLoss\tP\tR\tF")
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print("Itn.\tLoss\tP\tR\tF")
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progress = '{i:d} {loss:.3f} {textcat_p:.3f} {textcat_r:.3f} {textcat_f:.3f}'
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progress = '{i:d} {loss:.3f} {textcat_p:.3f} {textcat_r:.3f} {textcat_f:.3f}'
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@ -387,7 +387,7 @@ cdef class GoldParse:
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def __init__(self, doc, annot_tuples=None, words=None, tags=None, heads=None,
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def __init__(self, doc, annot_tuples=None, words=None, tags=None, heads=None,
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deps=None, entities=None, make_projective=False,
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deps=None, entities=None, make_projective=False,
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cats=tuple()):
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cats=None):
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"""Create a GoldParse.
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"""Create a GoldParse.
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doc (Doc): The document the annotations refer to.
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doc (Doc): The document the annotations refer to.
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@ -398,12 +398,15 @@ cdef class GoldParse:
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entities (iterable): A sequence of named entity annotations, either as
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entities (iterable): A sequence of named entity annotations, either as
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BILUO tag strings, or as `(start_char, end_char, label)` tuples,
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BILUO tag strings, or as `(start_char, end_char, label)` tuples,
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representing the entity positions.
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representing the entity positions.
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cats (iterable): A sequence of labels for text classification. Each
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cats (dict): Labels for text classification. Each key in the dictionary
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label may be a string or an int, or a `(start_char, end_char, label)`
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may be a string or an int, or a `(start_char, end_char, label)`
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tuple, indicating that the label is applied to only part of the
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tuple, indicating that the label is applied to only part of the
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document (usually a sentence). Unlike entity annotations, label
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document (usually a sentence). Unlike entity annotations, label
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annotations can overlap, i.e. a single word can be covered by
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annotations can overlap, i.e. a single word can be covered by
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multiple labelled spans.
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multiple labelled spans. The TextCategorizer component expects
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true examples of a label to have the value 1.0, and negative examples
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of a label to have the value 0.0. Labels not in the dictionary are
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treated as missing -- the gradient for those labels will be zero.
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RETURNS (GoldParse): The newly constructed object.
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RETURNS (GoldParse): The newly constructed object.
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"""
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"""
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if words is None:
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if words is None:
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@ -434,7 +437,7 @@ cdef class GoldParse:
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self.c.sent_start = <int*>self.mem.alloc(len(doc), sizeof(int))
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self.c.sent_start = <int*>self.mem.alloc(len(doc), sizeof(int))
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self.c.ner = <Transition*>self.mem.alloc(len(doc), sizeof(Transition))
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self.c.ner = <Transition*>self.mem.alloc(len(doc), sizeof(Transition))
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self.cats = list(cats)
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self.cats = {} if cats is None else dict(cats)
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self.words = [None] * len(doc)
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self.words = [None] * len(doc)
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self.tags = [None] * len(doc)
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self.tags = [None] * len(doc)
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self.heads = [None] * len(doc)
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self.heads = [None] * len(doc)
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@ -551,7 +551,6 @@ class NeuralLabeller(NeuralTagger):
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label = self.make_label(i, words, tags, heads, deps, ents)
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label = self.make_label(i, words, tags, heads, deps, ents)
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if label is not None and label not in self.labels:
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if label is not None and label not in self.labels:
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self.labels[label] = len(self.labels)
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self.labels[label] = len(self.labels)
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print(len(self.labels))
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if self.model is True:
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if self.model is True:
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token_vector_width = util.env_opt('token_vector_width')
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token_vector_width = util.env_opt('token_vector_width')
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self.model = chain(
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self.model = chain(
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@ -720,11 +719,17 @@ class TextCategorizer(BaseThincComponent):
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def get_loss(self, docs, golds, scores):
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def get_loss(self, docs, golds, scores):
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truths = numpy.zeros((len(golds), len(self.labels)), dtype='f')
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truths = numpy.zeros((len(golds), len(self.labels)), dtype='f')
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not_missing = numpy.ones((len(golds), len(self.labels)), dtype='f')
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for i, gold in enumerate(golds):
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for i, gold in enumerate(golds):
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for j, label in enumerate(self.labels):
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for j, label in enumerate(self.labels):
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truths[i, j] = label in gold.cats
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if label in gold.cats:
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truths[i, j] = gold.cats[label]
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else:
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not_missing[i, j] = 0.
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truths = self.model.ops.asarray(truths)
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truths = self.model.ops.asarray(truths)
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not_missing = self.model.ops.asarray(not_missing)
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d_scores = (scores-truths) / scores.shape[0]
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d_scores = (scores-truths) / scores.shape[0]
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d_scores *= not_missing
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mean_square_error = ((scores-truths)**2).sum(axis=1).mean()
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mean_square_error = ((scores-truths)**2).sum(axis=1).mean()
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return mean_square_error, d_scores
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return mean_square_error, d_scores
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